分层抽样下半监督设置中预测规则的高效评估

Efficient Evaluation of Prediction Rules in Semi-Supervised Settings under Stratified Sampling

Journal of the Royal Statistical Society. Series B: Statistical Methodology · 2022
被引 22
ABS 4

中文导读

提出一种两步半监督学习方法,在分层抽样下评估基于二元回归模型的预测规则,通过加权回归插补缺失标签并增强插补以保证一致性,相比监督方法效率更高,适用于电子健康记录研究。

Abstract

In many contemporary applications, large amounts of unlabeled data are readily available while labeled examples are limited. There has been substantial interest in semi-supervised learning (SSL) which aims to leverage unlabeled data to improve estimation or prediction. However, current SSL literature focuses primarily on settings where labeled data is selected uniformly at random from the population of interest. Stratified sampling, while posing additional analytical challenges, is highly applicable to many real world problems. Moreover, no SSL methods currently exist for estimating the prediction performance of a fitted model when the labeled data is not selected uniformly at random. In this paper, we propose a two-step SSL procedure for evaluating a prediction rule derived from a working binary regression model based on the Brier score and overall misclassification rate under stratified sampling. In step I, we impute the missing labels via weighted regression with nonlinear basis functions to account for stratified sampling and to improve efficiency. In step II, we augment the initial imputations to ensure the consistency of the resulting estimators regardless of the specification of the prediction model or the imputation model. The final estimator is then obtained with the augmented imputations. We provide asymptotic theory and numerical studies illustrating that our proposals outperform their supervised counterparts in terms of efficiency gain. Our methods are motivated by electronic health record (EHR) research and validated with a real data analysis of an EHR-based study of diabetic neuropathy.

半监督学习分层抽样预测评估电子健康记录